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AN ASSESSMENT OF THE FINANCIAL RESOURCE
ALLOCATION CRITERIA FOR DISTRICTS HEALTH
SERVICES IN ZAMBIA: FROM AN EQUITY PERSPECTIVE
LEE CHILESHE
ZAMBIA
49th International Course in Health Development (ICHD)
September 19 2012 – September 6, 2013
KIT (ROYAL TROPICAL INSTITUTE) Development Policy & Practice
Vrije Universiteit Amsterdam
i
A thesis submitted in Partial fulfillment of the requirement of the degree
of the Masters of Public Health
Compiled by:
Lee Chileshe Zambia
Declaration
Where other people‟s work has been used (either from a printed source,
internet or any other source) this has been carefully acknowledged and referenced in accordance with departmental requirements.
The thesis “An Assessment of the Financial Resource Allocation Criteria to
District Health Services from an Equity Perspective in Zambia”, is my
own work.
Signature…………………………………………………………………
49th International Course in Health Development (ICHD) September 19 2012 – September 6, 2013 KIT (Royal Tropical
Institute)/Vrije Universiteit Amsterdam, The Netherlands September 2013
Organized by:
KIT (Royal Tropical Institute), Development Policy & Practice
Amsterdam, The Netherlands
In co-operation with:
Vrije Universiteit Amsterdam/Free University of Amsterdam (VU) Amsterdam, The Netherlands
ii
TABLE OF CONTENTS
LIST OF TABLES ................................................................................................................................................................ IV
LIST OF FIGURES ................................................................................................................................................................ V
ACKNOWLEDGEMENT .................................................................................................................................................... VI
ABSTRACT ......................................................................................................................................................................... VII
LIST OF ABBREVIATIONS ........................................................................................................................................... VIII
DEFINITIONS ..................................................................................................................................................................... IX
INTRODUCTION ................................................................................................................................................................ XI
CHAPTER 1: BACKGROUND ............................................................................................................................................ 1
1.1 GEOGRAPHY ............................................................................................................................................................................. 1 1.2 DEMOGRAPHY .......................................................................................................................................................................... 1 1.3 POLITICS AND ADMINISTRATION .......................................................................................................................................... 2 1.4 ECONOMY ................................................................................................................................................................................. 2 1.5 EDUCATION .............................................................................................................................................................................. 2 1.6 HEALTH SITUATION ................................................................................................................................................................ 2
1.6.1. Malaria .............................................................................................................................................................................. 3 1.6.2. Tuberculosis .................................................................................................................................................................... 3 1.6.3. HIV/AIDS .......................................................................................................................................................................... 3 1.6.4. Maternal Health ............................................................................................................................................................. 4 1.6.5. Child Health ..................................................................................................................................................................... 4
CHAPTER 2: PROBLEM STATEMENT, OBJECTIVES AND METHODOLOGY ..................................................... 5
2.1 PROBLEM STATEMENT ........................................................................................................................................................... 5 2.2 JUSTIFICATION ......................................................................................................................................................................... 6 2.3 STUDY OBJECTIVES ................................................................................................................................................................. 8
2.3.1. Overall Objectives .......................................................................................................................................................... 8 2.3.2. Specific Objectives ......................................................................................................................................................... 8
2.4 METHODOLOGY ....................................................................................................................................................................... 9 2.4.1. Research Design ............................................................................................................................................................. 9 2.4.2. Search Strategy and Data Sources ......................................................................................................................... 9 2.4.3. Financial Years Considered for Analysis and Selection of Kenya for Comparison ............................... 9
CHAPTER 3: GOVERNMENT RESOURCE ALLOCATION IN ZAMBIA AND EXPERIENCES IN KENYA ..... 11
3.1. HEALTH CARE FINANCING IN ZAMBIA .............................................................................................................................. 11 3.2. ALLOCATION BY LEVEL OF CARE ....................................................................................................................................... 12 3.3. INTER – DISTRICT ALLOCATIONS ...................................................................................................................................... 14 3.4. INTRA – DISTRICT ALLOCATIONS (RECURRENT BUDGET) ........................................................................................... 14 3.5. EVOLVEMENT OF THE RESOURCE ALLOCATION TO DISTRICTS IN ZAMBIA ................................................................ 14
3.5.1. The Initial Resource Allocation Criteria ............................................................................................................ 14 3.6. REVISION OF THE RESOURCE ALLOCATION CRITERIA .................................................................................................... 16
3.6.1 The 2004 Revision ...................................................................................................................................................... 16 3.6.2 Further Revision in 2008/9 .................................................................................................................................... 19
CHAPTER 4: ASSESSMENT OF FINANCIAL RESOURCE FLOWS FOR HEALTH IN ZAMBIA ...................... 22
4.1. ACTUAL RESOURCE FLOWS TO DISTRICTS ........................................................................................................................ 22 4.1.1. Budgets Allocated to Districts ............................................................................................................................... 22
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4.1.2. Budgets Actually Released to Districts............................................................................................................... 24 4.1.3. Budget execution (actual expenditure) ............................................................................................................. 26
4.2. CONFORMITY TO RESOURCE ALLOCATION CRITERIA AND GUIDELINES ..................................................................... 27 4.2.1. Overall District Allocation ...................................................................................................................................... 27 4.2.2. Intra-District Allocation .......................................................................................................................................... 33
CHAPTER 5: DISCUSSION ............................................................................................................................................. 35
5.1. INTRODUCTION OF THE CONCEPTUAL FRAMEWORK ..................................................................................................... 35 5.2. ASSESSMENT OF THE FORMULA ......................................................................................................................................... 35
5.2.1. Need related to population size ............................................................................................................................ 35 5.2.2. Need related to demographic composition ...................................................................................................... 36 5.2.3. Need related to disease situation/health indicators .................................................................................... 37 5.2.4. Need related to socio-economic status .............................................................................................................. 37 5.2.5. Levels of Present Service Use ................................................................................................................................. 38 5.2.6. Differing Costs.............................................................................................................................................................. 38
5.3. IMPLEMENTATION OF THE RESOURCE ALLOCATION FORMULA ................................................................................... 38
CHAPTER 6: CONCLUSION AND RECOMMENDATIONS ...................................................................................... 41
6.1. CONCLUSION ......................................................................................................................................................................... 41 6.2. RECOMMENDATIONS ........................................................................................................................................................... 42
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List of Tables
TABLE 1: SELECTED DEMOGRAPHIC INDICATORS ................................................................. 1
TABLE 2: DELIVERIES ATTENDED BY HEALTH PERSONNEL BY PROVINCE, 2008-2010 ....................... 4
TABLE 3: CEILINGS FOR INTRA-DISTRICT ALLOCATIONS OF GRZ GRANTS .................................. 14
TABLE 4: VARIABLES USED IN DERIVING THE MATERIAL DEPRIVATION INDEX .............................. 17
TABLE 5: 2004 CLASSIFICATION OF DISTRICTS BY QUINTILE USING DISTRICT DEPRIVATION INDICES. 18
TABLE 6: 2009 CLASSIFICATION OF DISTRICTS BY QUINTILE USING DISTRICT DEPRIVATION INDICES. 19
TABLE 7: WEIGHTED VARIABLES IN KENYAS‟ RESOURCE ALLOCATION CRITERIA ........................... 20
TABLE 8: AMOUNTS AND PERCENTAGE ALLOCATIONS TO PROVINCES FOR DISTRICT HEALTH SERVICES:
2005, 2008, 2010, AND 2011 ........................................................................... 23
TABLE 9: TOTAL RELEASES TO HEALTH AGAINST TOTAL BUDGET ALLOCATION TO HEALTH FROM MOFNP:
2005, 2008, 2010, AND 2011 ........................................................................... 24
TABLE 10: DISTRICTS BY PERCENTAGE RANGE OF RECURRENT BUDGET RELEASED OF TOTAL DISTRICTS
RECURRENT BUDGET ALLOCATION, 2005, 2008, 2010, AND 2011 ................................. 26
TABLE 11: DISTRICT HEALTH SERVICES EXPENDITURE ANALYSIS BY LEVEL OF DELIVERY, 2008, 2010
AND 2011 ...................................................................................................... 27
TABLE 12: ACTUAL ALLOCATION TO DISTRICTS AGAINST PROPOSED ALLOCATION (60%), 2008, 2010
AND 2011 ...................................................................................................... 28
TABLE 13: ACTUAL ALLOCATION VS. PROPOSED ALLOCATION TO DISTRICT RECURRENT BUDGET, 2008,
2010, 2011 .................................................................................................. 28
TABLE 14: WEIGHTING THE POPULATION (2010) WITH NORMALISED MATERIAL DEPRIVATION INDEX FOR
2010 ........................................................................................................... 30
TABLE 15: ACTUAL VS. RECOMMENDED INTRA-DISTRICT ALLOCATION PER LEVEL OF SERVICE DELIVERY
WITHIN DISTRICTS, 2008, 2010, 2011 ................................................................. 34
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List of Figures
FIGURE 1: FLOW OF FUNDS AND OTHER RESOURCES IN ZAMBIA'S GOVERNMENT HEALTH SECTOR .... 12
FIGURE 2: HEALTH SECTOR BUDGET ALLOCATIONS ............................................................ 13
FIGURE 3: COMPOSITION OF THE TOTAL DISTRICT ALLOCATION, 60% OF THE TOTAL HEALTH RESOURCES
.................................................................................................................. 13
FIGURE 4: COMPARISON IN PROPOSED ALLOCATION BY THE TWO FORMULAE (2004 AND 2008/09)
USING 2010 FIGURES ........................................................................................ 20
FIGURE 5: BUDGET ALLOCATIONS TO DISTRICT HEALTH SERVICES BY PROVINCE: 2005, 2008, 2010,
2011 ........................................................................................................... 23
FIGURE 6: BUDGET ALLOCATION TO DISTRICTS FOR RECURRENT BUDGET ONLY AND TOTAL BUDGET AS A
PERCENTAGE OF TOTAL HEALTH BUDGET: 2008, 2010, 2011 ........................................ 24
FIGURE 7: COMPARISON OF TOTAL DISTRICT BUDGET RELEASES WITH DISTRICTS RECURRENT BUDGET
RELEASES: 2008, 2010, 2011 ............................................................................ 25
FIGURE 8: PERCENTAGE DISTRICTS RECURRENT BUDGET RELEASES OF TOTAL ALLOCATED DISTRICT
RECURRENT BUDGET, 2010 AND 2011 ................................................................... 26
FIGURE 9: ACTUAL VS. FORMULA BASED PERCENTAGE ALLOCATION TO DISTRICT HEALTH SERVICES PER
PROVINCE USING THE REVISED FORMULA, 2010 ........................................................ 29
FIGURE 10: PERCENTAGE DISTRIBUTION OF DISTRICT ALLOCATION OF FUNDS BY COST ITEMS: 2008,
2010, 2011 .................................................................................................. 33
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Acknowledgement
I wish to extend special acknowledgement to my family, workmates and
friends for their continued support and encouragement to pursue this course and throughout my study and stay in Netherlands.
First and foremost I would like to thank my wife Nkonda Mwanza Chileshe
for continuously encouraging me to upgrade myself academically and for being there for me whenever I needed her support throughout my study
period. I also want to extend my special thanks to all family members and our friends who were always there for me and my family in both good and
bad times. I sincerely appreciated your support and recognize that my stay in Europe would not have been pleasant without you.
Secondly I wish to acknowledge the Royal Tropical Institute (KIT) and its
management for giving me an opportunity to pursue a Masters in Public
Health at KIT.
Lastly, I wish to extend my gratitude to the Government of Zambia for their continued patronage throughout my study and stay in Netherlands,
Europe. It would not have been possible for me to study in Europe if it had not been for their sponsorship and support. Special thanks go to Dr.
Peter Mwaba (Permanent Secretary of Health), Dr. Christopher Simoonga (Director Policy and Planning), Mr. Mubita Luwabelwa (Deputy Director,
Planning and Budgeting) and all other staff members at the Ministry of Health who supported me, including all my colleagues in the Directorate
of Policy and Planning.
vii
Abstract
Background: As a way of increasing objectivity and transparency in the
allocation of financial resources to district health services, the Ministry of Health introduced and implemented a Resource Allocation Formula (RAF)
in 1994. Further revisions to the RAF were made in 2004 and 2008/09.
Objective: the main objective/aim of this study is to critically review the financial RA formula/criteria across districts in Zambia in order to assess
its potential impact on equity and provide recommendations to the Zambian Government.
Method: A review of literature on health care financing and resource
allocation criteria. Literature on resource allocation criteria is analyzed based on budget levels of allocation, releases and expenditures, as well
as using the relevant existing theories on equity. A framework for
assessment of the formula is introduced in chapter 5 in order to guide the discussion.
Result: The results of the study reveal that after its revision in 2008/09,
the financial RAF was more resolute and equity focused as compared to the 2004 formula. However, despite the 2008 formula being more equity
focused, its application is limited. Only three (3) districts had financial resources allocated in accordance with the formula while the other 69
districts continued receiving funds either above or below the formula. This suggests that resource allocation formulas are not always adhered to in
actual allocations and releases of funds.
Conclusion and Recommendation: The formula has not comprehensively incorporated all important need areas, and is yet to be
applied fully in Zambia. The study recommends the need to further revise
the formula to link disease and demographic composition variables, while at the same time strengthening monitoring of the implementation process
Key words: Resource allocation, Equity, efficiency, Zambia
Word count: 11,586 Words
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List of Abbreviations
ABB Activity Based Budgeting
ANC Antenatal Care CSO Central Statistical Office
CBoH Central Board of Health DALY Disability Adjusted Life Years
DHMT District Health Management Team DHO District Health Office
FNDP Fifth National Development Plan GDP Gross Domestic Product
GNI Gross National Income HIV Human Immune Deficiency Virus
HMIS Health Management Information System MDGs Millennium Development Goals
MDI Material Deprivation Index
MMD Movement to Multi-Party Democracy MoH Ministry of Health
MoFNP Ministry of Finance and National Planning MSL Medical Stores Limited
MTEF Medium Term Expenditure Framework NAC National HIV/AIDs/STIs/TB Council
NHSP National Health Strategic Plan NGOs Non-Governmental Organizations
PCA Principal Component Analysis PHO Provincial Health Office
PPP Purchasing Power Parity RAC Resource Allocation Criteria
RAF Resource Allocation Formula RASC Resource Allocation Steering Committee
RATWG Resource Allocation Technical Working Group
SNDP Sixth National Development Plan SWAp Sector Wide Approach
tTBA Trained Traditional Birth Attendant TB Tuberculosis
UNDP United Nations Development Programmes UNICEF United Nations Children‟s Funds
WB World Bank WHO World Health Organization
ZDHS Zambia Demographic and Health Survey ZISSP Zambia Integrated Systems Support Program
ix
Definitions
Financial Resource Allocation: The manner in which recurrent funds
are distributed across geographical areas for health services at that level of care, (Witter et al, 2000).
Budget: A quantification of resources and associated costs of
implementing a plan within a defined time frame, (MoH, 2004).
Equity: Everyone to have equal access (both geographical and financial) to existing health care facilities and services, (Witter et al, 2000).
Material Deprivation: Refers to a state of economic stress and durables,
defined as the enforced inability to (rather than the choice not to do so) pay unexpected expenses, a meal involving meat, chicken or fish,
adequate heating of a dwelling etc, (Eurostat, 2013).
Performance Based Financing: A way of financing health services that
is result-oriented and practically ties payments to staff or beneficiaries based on their achievement of agreed upon, measurable performance
targets, (World Bank, 2010)
Horizontal Equity: People with similar need should receive similar level of benefits (in terms of access, quality of care etc.) and those with similar
income should contribute the same (in terms of financing health services): Equal treatment for all equals, (Witter et al, 2000).
Vertical Equity: People with different health needs be treated differently
and those with different abilities to pay contribute different amounts; Unequal treatment for all unequal‟s, (Witter et al, 2000).
District Health Services: Essential health services that are provided at district level at cost that is affordable by the communities, (Witter et al,
2000).
Variables: Any aspect of an individual or household that is measured, like income, age, sex, blood pressure etc, (Kirkwood, 2003).
Principal Component Analysis: One of the most commonly used
statistical methods for factor extraction by finding a few combination of variables, called components, that adequately explains the overall
observed variation, and thus to reduce the complexity of data, (Kirkwood, 2003)
Inverse Care Law: The principle that the availability of good medical
care tends to vary inversely with the need of the population that is
served, may be applied to health care and resource allocation, with less
x
resources allocated to the poor and more to the rich”, (Diederichsen,
2004).
Perverse Incentive: An incentive that can lead to behavior contrary to the goal of the public health policy. For example if performance indicators
are incentivized, people tend to exaggerate their performances in order to get more resources, (Mclntyre, 2007).
Incremental Budgeting: Budgeting for a particular health service or
facility on the basis of the previous budget but with a small increase just to take care of inflation/price increases, (Pearson, 2002).
Need-based Formula: A formula used to inform the allocation of health
care resources among different geographic areas. It includes indictors for each area need for health care such as population size, age and sex
composition of the population and its relative burden for ill health.
User Fees: A fee charged at the place and time of service use within a
public health facility and paid on an out of pocket basis, (Mclntyre, 2007).
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Introduction
The Zambian Government has since 1992 been implementing health
sector reforms whose main purpose was to strengthen health service delivery and ultimately improve health status of the people of Zambia. As
part of the package of the health sector reforms the government introduced and implemented a scientific formula to allocate resources
across geographical areas in 1994. The formula has since undergone revisions in order to incorporate more key variables that adequately
address equity in the distribution of resources. The need for further revisions has risen high on the policy agenda and this was exemplified by
the 2011-2015 National Health Strategic Plan (NHSP) which emphasized on the need to refine the resource allocation formula in order to account
for input costs.
I joined the Ministry of Health in November 2008 in the Planning and
Budgeting Unit under the Directorate of Policy and Planning. The Planning and Budgeting is responsible for the mobilization and distribution of
resources to all levels of service delivery including district level services. However, throughout my involvement in planning for the sector,
allocating resources to districts has always provoked a lot of debates, of which a lot of queries and concerns remain unanswered. It is for this
reason that I became very interested in broadening my understanding of the formula and be able to assess its efficiency in order to contribute
positively to its on-going revision process.
I therefore joined a master program at the Royal Tropical Institute in order to enhance my skills and understanding of Public Health with its
related issues and use the acquired knowledge to contribute in making positive changes in my area of work.
The masters course has attempted to answer most of the questions on the resource allocation to various health services and interventions, and
hence I wish to take a deeper assessment on the variables presented in the Zambian resource allocation criteria in order to provide sound
recommendations to the Zambian Government for effective decision making.
This paper is broken down into six (6) chapters. The first chapter contains
the background information about Zambia; the second chapter presents the problem statement, Justification and the methodology of the study;
chapter three (3) highlights the financial resource flows in the Zambia health system and the evolvement of the resource allocation formula to
district health services; the fourth chapter presents the results of the study; the discussion then follows in chapter five (5) and; lastly the
conclusion is made with recommendations in chapter six (6).
1
CHAPTER 1: BACKGROUND
This chapter presents background information about Zambia with respect
to its geography, demography, political administration, economy, education and health situation.
1.1 Geography
Zambia is a landlocked Sub-Sahara African country sharing boundaries
with eight (8) neighboring countries, namely; Malawi and Mozambique to the east; Zimbabwe, Botswana and Namibia to the south; Angola to the
west; and the Democratic Republic of Congo and Tanzania to the north. The country covers a land surface area of 752,612 km2. It lies between 8º
and 18º south latitudes and longitudes 22º and 34º east. About 58 per cent of Zambia‟s total land area of 39 million hectares is classified as
having medium to high potential for agricultural production, but less than
half of potential arable land is cultivated. The country is prone to drought due to erratic rainfall, as its abundant water resources remain largely
untapped. Zambia has some of the largest copper and cobalt deposits in the world, (CSO, 2010).
1.2 Demography
According to the 2010 Census of Population and Housing, Zambia has a total population of 13,092,666, representing an increase of 32% from the
population of 9,885,591 recorded in 2000. The majority of the population 61% (7,919,216) reside in the rural parts of the country with the
remaining 39% residing in the urban areas. Disaggregation of the population by sex shows that 49% (6,454,647) are males and 50%
(6,638,019) are females. With the 45% of the population below the age of 15 years, Zambia‟s population is considered a young population with
the potential for a continued growth. The population is currently growing at 2.8% annually. Although the national average population density
stands at 17.4 persons per square kilometer, there are major variations across provinces with Lusaka province having the highest 100.0 persons
per square kilometer and Copperbelt Province second with a population
density of 63.0 persons per square kilometer. North-western Province has the lowest with a population density of 5.8 persons per square kilometer.
Table 1: Selected Demographic Indicators
Indicator Status Source
Population 13.1 Million CSO, 2010
Sex Ratio (Males/ Female) 0.99 CSO, 2010
Annual Growth Rate 2.8% CSO, 2010
Life Expectancy at Birth 51.3 years CSO Projections
% of under 15yrs population 45.4% CSO, 2010
Average Family Size CSO, 2010
Source: (CSO, 2010)
2
1.3 Politics and administration
Politically, Zambia has undergone phases of both multi-party state and
one party rule. The country, which is a former British colony, gained its independence in 1964. Administratively, the country is divided into nine
provinces: Central, Copperbelt, Eastern, Luapula, Lusaka, Northern (now split into two provinces), North-Western, Southern and Western. These
provinces are further subdivided into 72 districts.
1.4 Economy
Zambia has recorded major improvements in macro-economic performance, with annual economic growth rate averaging 6.2% per year
over the past 6 years, (MoFNP, 2012). The World Bank recently classified Zambia as a lower middle income country as GDP per capita rose to
$1,712 and GNI per capita to $1,620, (WB, 2012). Whilst the mining
sector is the main source of growth other key sources include agricultural, construction, and the telecommunications sector. This positive situation
notwithstanding, poverty levels are high in Zambia with the majority of the population 60.2% living below the poverty line, (CSO, 2010).
Worsening the above condition is the high prevalence of income
inequalities in the country demonstrated by a Gini coefficient estimated at 0.53 compared to the Sub-Saharan average value of 0.46, (MoFNP,
2011). The Gini-coefficient is a measure of income inequalities in the population and it ranges from 0 to 1, with 0 representing highest equality
across the population and 1 representing highest inequality.
1.5 Education
In Zambia, the central government remains the main providers of
education at all levels with about 88% of the school attendants in the government schools. The private sector has also been increasing and is
making significant contribution to the education sector at particularly college and university levels, (CSO, 2010). Overall, the net attendance
rate for primary school level is 79%, whereas that for secondary school level is 44%. Gender disparities in school attendances continue to be
noticed especially at secondary and tertiary levels where males tend to dominate. There are also rural- urban differentials, with urban
attendances being consistently higher for all ages in primary and secondary schools, (CSO, 2010).
1.6 Health Situation
Zambia‟s disease burden is mainly driven by poverty related diseases and
conditions such as malaria, HIV/AIDS, malnutrition and tuberculosis and
diarrhoea. Malaria remains the highest cause of morbidity currently
3
contributing well over 40% of all diagnoses. With an increasing trend of
non-communicable (NCDs), Zambia is being faced with a double burden of fighting communicable diseases and NCDs at the same time, impacting
heavily on the human, financial and material resources available for health, (MoH, 2010). Below are some highlights of the disease situation.
1.6.1. Malaria
Malaria is endemic in Zambia with seasonal variations. Overall, Malaria
cases reported (used as an inappropriate proxy for incidence) stands at 330 per 1,000 population per year, with hospital malaria case fatality rate
recording at 34 per 1,000 admissions. In 2009 and 2010, malaria case fatality rate was higher in the age group 5 years and below than the age
group 5 years and above, (MoH, 2010). In terms of disease burden malaria is the second leading cause of disability-adjusted life years
(DALY), after pneumonia, with 5.1% share in the disease burden, (WHO,
2004)
1.6.2. Tuberculosis
Although tuberculosis (TB) programmes have had a positive impact on the TB situation in the country, with the treatment success rate as high as
86% against the MDGs target of 85%, the disease still remains a major public health concerns in Zambia. TB notification rates per 100,000
population has remained almost stagnant over the years recording at 378 per 100,000 population in 2008 to 377 per 100,000 population in 2009
and at 373 per 100,000 population in 2010, (MoH, 2010). The TB case detection rate has been improving and was in 2009 recorded at 58%,
showing progress towards attaining the 70% target for the MDG. The defaulter rate and death rate stand at 3% and 7%, respectively. The rate
of HIV testing for TB patients increased from 23% in 2006 to 72% in
2009, while the proportion of HIV positive TB patients receiving cotrimoxazole and ART, increased from 30% and 37% in 2006 to 63%
and 42% in 2009, respectively. 1.6.3. HIV/AIDS
Zambia is among the most severely affected countries with HIV infections
in the Sub-Saharan region. According to the Zambia Demographic and Health Survey (ZDHS) 14.3% of the adult Zambian population is HIV
positive, with prevalence rates as high as 20% in urban areas and 10% in rural areas (CSO et al, 2007). The prevalence rate is higher among
women (16%) than among men (12%). With the HIV prevalence rate in the Sub-Saharan Africa region standing at 5% on average, Zambia is one
of the countries with a particularly high prevalence of HIV in the region (NAC, 2012). New infections are projected to increase from an estimated
67,602 adults in 2006 to 72,019 in 2015.
4
1.6.4. Maternal Health
Maternal Mortality ratio in Zambia stands at 591 per 100,000 births, as
revealed by the results of the 2007 ZDHS. The provision of integrated reproductive health remains a major priority for the health sector.
Through the Ministry‟s concerted efforts to increase access to integrated reproductive health and family planning, antenatal coverage in 2009 was
at 94 percent with antenatal care visits averaging 5.4 visits per pregnancy. The percentage of institutional deliveries has remained
stagnant between 2008 and 2010 at 45%, (MoH, 2010)
As regards to maternal health and family planning, supervised deliveries increased from 60% in 2008 to 67%t in 2009 and then reducing to 57%
in 2010. Deliveries assisted by Trained Traditional Birth Attendants (tTBAs), declined slightly by 2 percentage points between 2008 and 2010.
Furthermore, first antenatal coverage also reduced between 2008 and
2010 from 98% to 85% in 2008 and 2010, respectively, (MoH, 2010). Table 2: Deliveries attended by health personnel by province, 2008-2010
Province
Institutional
deliveries (%)
Trained traditional birth
attendants (tTBA) %
Supervised
deliveries (%)
2008 2009 2010 2008 2009 2010 2008 2009 2010
Central 38 35 43 20 30 15 58 65 58
Copperbelt 56 56 52 10 14 12 66 70 64
Eastern 42 45 49 20 38 13 62 83 62
Luapula 42 42 39 22 32 15 64 74 54
Lusaka 64 62 49 4 10 8 68 72 57
Northern 33 33 31 24 13 23 57 46 54
North-Western 43 48 43 15 57 16 58 105 59
Southern 35 40 39 14 19 14 49 59 53
Western 49 36 54 8 14 5 57 50 59
Zambia 45 44 45 15 23 13 60 67 57
Source: MoH Statistical bulletin, 2010
1.6.5. Child Health
Child mortality and infant mortality rates stand at 119 and 70 per 1000, respectively. This was according to the 2007 ZDHS results released in
2008. The high rates were largely attributed to neonatal complications, malaria, diarrhoea, pneumonia, anaemia, malnutrition and poor maternal
health. Furthermore, only 20% of mothers attend post-natal care after two weeks, thereby compromising opportunities for child survival. Other
factors compromising child health were the high prevalence of HIV and AIDS, with close to 7,000 new paediatric infections per year.
5
CHAPTER 2: PROBLEM STATEMENT, OBJECTIVES AND
METHODOLOGY
2.1 Problem Statement
Traditionally, resource allocation in the Zambian health sector, as in many other sectors, was largely based on fixed incremental criteria to account
for inflation and in some cases to offset rising operating costs, be it at provincial or district levels. It was not until the early and mid-1990s that
a new school of thought emerged which thought it was generally more appropriate to start allocating resources proportionately to the population
served. An MOH policy document of 1992 stipulated the need to achieve a more equitable mechanism for the distribution of health services
countrywide, (MoH, 2004)
The major challenge is how to allocate limited health resources in an
equitable and effective manner as a way that ensures the delivery of quality health services. In 1994, district resource allocation criteria
applied district population, weighted for density, multiplied by an agreed per capita allocation, and then presence of a second or third level hospital
also having a weight on the allocation. In 1995, more parameters were added to account for an index of fuel prices as a proxy for cost
differentials between districts. Other parameters included proneness to cholera or dysentery and presence of a bank and/or a filling station in a
district, (MoH, 2004).
The allocation criteria was further criticized for not being flexible enough to address the varying levels of deprivation and vulnerability, the
utilization of inputs such as human resources, number of health facilities and disease burden. In addition, districts which are remote and have far-
off areas with relatively high administrative costs were not given special
attention, (MoH, 2004).
In 2004, the Ministry of Health developed a new resource allocation criterion for the districts which was first applied in 2005. The formula,
which took into consideration a weighted Material Deprivation Index (MDI), attempted to incorporate the prevailing poverty situation, disease
burden and the population size (Chitah and Masiye, 2007).
Despite having developed and implemented the new formula, debates still continued in technical meetings. The revision exercise was however,
delayed after the demise of the Central Board of Health (CBoH) in 2006. This was partly because the Resource Allocation Technical Working Group
(RATWG) which was put in place, comprising a wide range of key stakeholders, to develop the formula and oversee the process of
allocating resources, was also dissolved during the restructuring process
of the MoH, (Chitah and Masiye, 2007).
6
In 2008, a team of consultants was engaged to make a revision to the
design of the formula so as to incorporate variables of access to health facilities. The revised formula was first applied in 2009 for the 2010
budget and has since been used in the allocation of resources across districts as part of the national health budget development process, (MoH,
2011). Allocation of resources within the district is based on guidelines which stipulate the proportions of resources to be spent at the district
office, first level hospital, health center and community. The guidelines and resource allocation criteria/formula for the allocation of financial
resources to districts are restricted to non-salary recurrent budget/expenditure and therefore do not include neither capital
expenditure, nor personal emoluments for health facility and district hospital staff, (USAID, 2010).
The extent to which the formula has been effectively implemented to
address the concerns raised earlier has not been fully explored to date. It
is therefore the purpose of this study to critically review the implementation process of the most recently revised resource allocation
criteria, now used to distribute financial resources across districts in Zambia, and to assess its a priori importance to equity.
2.2 Justification
In its quest to increase access to health facilities in the rural and remote areas, in April 2006 the Government of Zambia abolished user fees in all
the fifty four (54) districts in Zambia which were classified rural. This followed a presidential pronouncement on January 1st 2006. The user fees
removal policy was further extended to peri-urban areas in 2007. As part of the measures to generate compensatory revenue to offset losses due
to the abolition of user fees, the government requested cooperating partners to increase their allocations for the District Health Sector Budget,
(Mclntyre D, 2008).
However, the abolition of user fees was, in early 2009, followed by a sudden withdrawal of cooperating partners‟ support to the health budget
due to unresolved issues with the Ministry of Health resulting from alleged
misappropriation of donor funds by some senior officers at the ministry. This development resulted in serious financial constraints which saw some
of the institutions, including training schools, temporarily closing down, (WB, 2010). The overall budget in 2009 reduced by about half since the
donor community had committed about 50% of the total health budget for the year, (MoFNP, 2009). This meant that the total resource allocation
to the districts also reduced as it is given as a proportion (60%) of the total budget.
Faced with a decline in the resource envelop in the health sector, the
Zambian government was under massive pressure to adequately finance
7
the provision of essential health services and promote efficiency, achieve
equity and improve the delivery of quality health care services. The rational and transparent allocation of resources to district health services
has therefore become more important than ever before. Several debates and ideas on a more equitable distribution of funds for district health
services have continued to be top on the agenda. As part of the key strategies of health care financing, the Ministry of Health needs
continuous reviewing and strengthening of the resource allocation to adequately address issues of unpredictable fiscal space and uncertainty of
donor funding, (MoH 2011).
However, it is also recognized that resource allocation criteria are not the only key factors impacting the distribution of health and health outcomes
of the population: also other factors such as the institutional framework, service delivery organization, policy environment, as well as the Social
Determinants of Health (SDoH) all contribute. The distribution of
resources never-the-less, remains a key aspect of health care financing and the impact of resources on health care and health outcomes.
“The „inverse care law‟, which is the principle that the availability of good
medical care tends to vary inversely with the need of the population that is served, may be applied to health care and resource allocation, with less
resources allocated to the poor and more to the rich”, (Diederichsen, 2004). It is a paradox which entails that invariably, the poor people with
the largest share of the burden of ill health tend to receive the smallest share of health resources. In short, health care resources are distributed
inversely in related to need. However, what now becomes a core issue to both within domestic health systems and internationally is the question of
how fairly resources are allocated across different sub-groups of the population.
Improving equity in population health has been identified as a key purpose of almost all health systems (Robert et al, 2004). In support of
this objective are policy commitments that have been made domestically, regionally and internationally. Example of these policy commitments are,
commitments to achieve universal access to health care in general and also universal access to antiretroviral therapy to be more specific, (Chitah
B, 2010). McIntyre et al. (2001) have argued that, “to make positive impact on health care and health status, the principles of resource
mobilization and resource allocation should be based on vertical equity, which has been explained later on in this paper. Allocation of the
resources can then be constructed to take into account these principles and values”.
The way a country allocates its financial resources to health services has
a major bearing on who enjoy health services most. No matter how good
8
National Policies and Strategies are set, financial resource allocation
criteria also determine whether the poor will enjoy the services or not. According to Pearson (2002), health financing impacts on this goal in two
ways:
On the supply side by ensuring that essential services are adequately funded and delivered; and
On the demand side by reducing financial barriers to access and by making sure that funds are raised and services delivered in ways
which are affordable to all, (Pearson, 2002).
2.3 Study Objectives
Given the above background, this study therefore, attempts to critically review the resource allocation criteria used to distribute financial
resources across districts in Zambia. It assesses whether the concept of
need was adequately incorporated in the formula in order to highlight areas where change in design or process may be beneficial.
2.3.1. Overall Objectives
To critically review the financial resource allocation criteria for district
health services in Zambia prior to and after its implementation in order to assess its potential impact on equity and to provide recommendations to
the Zambian Government.
2.3.2. Specific Objectives
1. To describe and discuss the resource allocation criteria and changes over time within Zambia and critically discuss their a priori
importance for equity;
2. To describe and analyze inter-district resource allocation flows in terms of resources budgeted and released to districts and actual
expenditure patterns ; 3. To assess the extent to which budgets, releases and expenditures
conform to resource allocation criteria and guidelines (including intra-district distribution of financial resources) and discuss reasons
for deviations; 4. To provide recommendations to the Zambian Government on
further adaptations in the resource allocation criteria based on the findings of this study.
Each of the above stated specific objectives are addressed in details in the
chapters that follow. Chapter 3 of this paper attempts to discuss and address the issues relating to the objective number 1, whereas objectives
2 and 3 are discussed and analyzed in chapter 4. Chapter 5 is basically
providing a discussion of the results and key findings of the research.
9
Lastly, chapter 6 gives a conclusion and makes recommendations based
on the findings in order to address objective 4.
2.4 Methodology
2.4.1. Research Design
This study is based on a review of literature on health care financing and resource allocation criteria. The study benefits from various sources of
information which include journals, published articles, existing databases, studies and reports. Literature on resource allocation criteria is analyzed
based on budget levels of allocation, releases and expenditures, as well as using the relevant existing theories on equity. A framework for
assessment of the formula is introduced in chapter 5 in order to guide the discussion.
2.4.2. Search Strategy and Data Sources
Review data on the resource allocation criteria in Zambia was searched and accessed through Activity Based Budgeting (ABB) databases, the
health management information system and other documents covering health economics and systems, social sciences and socio-economic data.
The stated information was accessed from published peer reviewed literature, grey literature, organization/government websites, WHO
website and ABB Databases from Ministry of Finance and National Planning. Search strategies included looking for terms with the subject
titles and other terms relating to equity and resource allocation. The information collected mostly pertains to Zambia and other countries of
similar characteristics to Zambia in the sub-Saharan region.
2.4.3. Financial Years Considered for Analysis and Selection of
Kenya for Comparison
The purpose of this study is to assess the implementation of the revised financial resource allocation formula which was first applied in 2009 in the
development of the 2010 budget. In assessing its outputs, the study also tries to compare the current with the previous formula which was
developed in 2004 and first applied on the 2005 budget. For this reason four financial years are selected for analysis, with two years prior to the
implementation of the new formula and the other two years within the implementation period of the formula. Generally years were selected
based on data completeness and availability, especially on expenditure information which is rarely captured in reports. For instance, 2012 would
have been ideal to include, but lack of complete information on releases and expenditures by districts has led to its exclusion from the analysis.
10
Another simple criterion used in the selection is looking at years where
major changes were made to the formula. Therefore, 2005, 2008, 2010 and 2011, were conveniently selected, after taking into account all the
above stated considerations. However, no budget release and expenditure information was available for 2005, so it was left out in some areas of
analysis. On the other hand, 2011 was special in the sense that it partly affected by the 2011 elections and was also the year that witnessed the
introduction of the Integrated Financial Management Information System (IFMIS) in MoH.
Kenya has been used for comparisons because of almost similar income
levels with Zambia. The two have been classified low-middle income countries with their GNI and GDP per capita at purchasing power parity
(PPP) recording around $1,700, (WB, 2012). In addition, Kenya is among the few countries in the region applying a similar need-based allocation
criteria to Zambia, with most of other countries still in the phase of
formally developing and implementing need based allocation criteria to health services, (Equinet Discussion Paper 52, 2007).
11
CHAPTER 3: GOVERNMENT RESOURCE ALLOCATION IN ZAMBIA
AND EXPERIENCES IN KENYA
3.1. Health Care Financing in Zambia
The health sector in Zambia competes for government funds with all other sectors in the country such as education, agriculture, manufacturing,
mining sectors etc. Every year, before the beginning of sector planning processes, the government of Zambia through the Ministry of Finance and
National Planning releases the Green paper. The Green paper provides an opportunity for the government to consult all stakeholders on the course
of action with regards to the country‟s development agenda, within the Medium Term Expenditure Framework (MTEF), (MoFNP, 2008). This
document also provides indicative financial ceilings to respective sectors for use in the planning and budgeting process for the three years MTEF
period. The public funds spent on the health sector from the total
government expenditure has been fluctuating around 10% in the past five years, which is below the Abuja recommended target of 15%, (MoH,
2012).
The flow of funds in Zambia's health sector is complicated and fragmented as can be observed from Figure 1 Salaries, drugs, and other
recurrent expenditures are disbursed separately by different agencies. MOFNP provides salaries directly to the Provincial Health Offices, which
then remit these to their health centers, first-level district hospitals, and second- and third-level hospitals (Figure 1). MOFNP provides the budget
for other recurrent expenditures directly to MOH while cooperating partners provide the budget for other recurrent expenditures through the
basket fund to MOH, although it is currently not functional following the suspension of donor support to the sector. These basket funds are
allocated in tandem with Zambian funds, and are managed and monitored
closely through a joint monitoring framework. MOH provides running costs (using Zambian and basket funds) to DHMTs and second- and third-
level hospitals. The DHMTs, in turn, provide running costs and drugs (which they obtain from Medical Stores Limited (MSL)) to the health
centers and district hospitals. Additional resources come from separate projects implemented by MOH, vertical projects implemented by donors
or contractors and internally generated funds of health facilities.
12
Figure 1: Flow of Funds and Other Resources in Zambia's Government Health
Sector
Source: MoH, 2006
3.2. Allocation by Level of Care
While objective criteria for geographical allocation of resources have been applied to the portion of the budget earmarked for districts, the rest of
the budget process has been less clear. In terms of determining the appropriate proportion of funding to go to districts vis-à-vis other levels of
the system, decisions have been made on a largely ad hoc basis. However, the policy of the Ministry of Health has been to increase the
proportion of funding going to the districts and reducing funding to
second and third level referral hospitals on grounds of efficiency and equity. To this effect it was considered that at least 60 percent of total
public health sector financial resources would need to go to districts. As a general guideline, the budget allocation by level of care is as illustrated in
the figure below, (MoH, 1993, 2011).
13
Figure 2: Health Sector Budget Allocations
Districts60%
Hospitals
20%
Training
10%
Stboards
6%
National
4%
The 60 percent allocation to district includes three main budget
categories/lines: A. Recurrent costs (mainly), which are transferred directly to districts as per existing resource allocation criteria; B. Drug
supplies budget line, which is managed at the central level on behalf of districts for procurement of standard Basic Health Care Items (drugs,
vaccines, medical supplies, medical & non-medical equipment, transport etc); and C. Personnel emoluments directly from the ministry of Finance
to districts as per human resource establishment. The allocation to this follow the guidelines provided in figure 3.
Figure 3: Composition of the total district allocation, 60% of the total health
resources
The allocation of drugs and medical supplies to districts accounts is based
mainly on districts population and the procurement and distribution is mainly handled by Medical stores. Districts do elaborate budgets for drugs
but funds are actually controlled by the Ministry of Health and MSL at the national level and no financial transaction in reality takes place between
medical stores and the districts. The districts are allowed to purchase a limited amount of drugs (not more than 4 percent of the total budget) on
the open market, which allows them to purchase drugs that MSL is unable to provide.
60% District
Allocation
30% Recurrent Costs
25% Drug Supplies
15% Capital Investment
30% Personnel Emoluments
14
3.3. Inter – District Allocations
To allocate financial resources across districts, the Ministry of health resource allocation formula was first developed in 2004 and further
revised in 2008/9 to bring about objectivity and transparency in the allocation of finances across districts. This resource allocation formula is
meant to ensure/guarantee that districts with higher population figures and districts with greater poverty incidence get a larger share of
allocation of resources compared to districts with lower population and/or poverty levels. The formula also need to take into account other
demographic and social-economic factors which are key considerations in the distribution of resources and will be discussed in detail later on in this
chapter.
3.4. Intra – District Allocations (Recurrent Budget)
The proportional allocation of funds within districts follows the planning
and budgeting guidelines which are given to the districts in the form of ceilings for planning and budgeting purposes. The extent to which districts
adhere to these guidelines will be analysed further in section 4.2 of chapter 4 on intra-district allocation conformity to resource allocation
criteria/guidelines. Table 3: Ceilings for Intra-district Allocations of GRZ grants
Levels Range (min-max allowed)
District administration 15%
District Hospitals 20-40%
Health Centres 45-60%
Community 10-15%
Source: MOH District Planning Guidelines, 2008 and 2011
3.5. Evolvement of the Resource Allocation to Districts in Zambia
3.5.1. The Initial Resource Allocation Criteria
The need to develop mechanisms for improving the equitable distribution
of resources in the Health Sector was proposed in the National Health Policies and Strategies (MOH 1992) and the need to refine and strengthen
mechanisms for resource allocation has been discussed sporadically since
the advent of reforms. Early moves to design and implement transparent and objective means of allocating government resources took place within
the context of a routine annual government-wide budget process, but in addition they were seen as an integral part of the decentralization
process.
Decentralized planning and budgeting evolved out of the need to link planned budget allocations to health sector objectives at the national level
15
and to ensure that adequate funds reached the district level. Up to 1993,
funds for district level health services delivery were channeled through the provincial Accounting office and Provincial Medical Offices had to
compete with the provincial branches from other government ministries and agencies for the limited funds sent to the province from Ministry of
Finance.
As is the case in many developing countries, sectoral budgets in Zambia have traditionally been determined in an “incremental” manner, whereby
historical allocations to specified line items, or inputs, were increased by a percentage to account for inflation. In the early 1990s, however,
following questions in Parliament, the Budget Office started allocating money to provinces on the basis of some form of allocation criteria; so for
primary education it was basically the number of pupils, for police it was population, for agricultural extension it was farming families, and so on.
Although population is believed to have been used as the basis for
funding health, this does not seem to have been worked out well in practice.
At the MOH annual budget workshop in September 1993, MOF staff
presented figures indicating the range of per capita provincial allocations to health in 1993. After deductions for salaries, it became clear that
Lusaka Province received much less per head (excluding the two central hospitals) compared with North-Western Province, resulting in a more
than 18-fold difference. This difference will however become less pronounced if central hospitals are included (as they should, since in fact
central hospitals primarily serve their immediate population as was illustrated by a study conducted by Atkinson et al. 1999). On the one
hand, Central hospitals also provide primary care services (Level 1), for patients that are not referred – which in fact they should not; on the
other hand, they receive referred patients not only from their own district,
but also from other places, referred to them for specialized tertiary services.
Concern about improved allocation and use of resources was expressed in
the ruling party‟s (MMD) health strategy paper, as well as in the original MOH policy document in 1992, which points to the need for the
government to consider how to achieve a more equitable mechanism for the distribution of resources for health care.” (MOH 1992)
As a result of seeing the inequalities arising under the provincial
budgeting system, it was decided to recentralize control of all funding for health services under the MOH permanent secretary from 1994. This was
done both to be able to apply more rational criteria for the geographical allocation of financial resources within the sector and to enable the
introduction nationwide of district grants. So, in 1994, the Ministry of
Health started allocating district grants on the basis of population size,
16
weighted by density. Other factors, such as presence of a bank and a
second or third level hospital in the district, were eventually included in the resource allocation criteria. Each district with certain peculiarities as
defined below is first allocated a weight, as a kind of correction factor, which is guided by the following criteria:
(i) +10% for low density districts
(ii) ± 5% according to index of fuel prices (as a proxy for cost differentials)
(iii) + 5% for districts prone to cholera or dysentery (iv) + 5% for districts without a bank and/or service station (as a
proxy for remoteness)
The weighting is then multiplied with the district population to arrive at the weighted population. For instance, if a district has all the peculiarities
stated above, the total correction factor would be +25% and this will be
the additional percentage (weight) to the district population. Each district is then allocated a percentage of the total grant equivalent to its weighted
population as a proportion of the total weighted population.
Initially, districts with a second- or third-level referral hospital were given 20% less than the budgetary allocation to adjust for existing
infrastructure, which was directly transferred to the respective hospitals. After 1997, this practice was discontinued to allow the districts to directly
contract higher level hospitals for the provision of referral services.
3.6. Revision of the Resource allocation Criteria
3.6.1 The 2004 Revision
There were discussions within the MOH and CBOH over several years
regarding the need to revise the relatively crude mechanism for geographical financial resource allocation. The areas, which were
earmarked for consideration included:
The need for objective criteria regarding the share of funds to be apportioned to districts with or without referral hospitals
Incorporation of poverty and/or vulnerability criteria Linkages with cost-sharing policy and practice
Problems in “small districts” where administrative costs are high relative to the proposed population-based allocation
In 2004, the Ministry of Health developed a new formula for allocating
resources to the districts for recurrent departmental budgets, which takes into account some of the issues raised above. The formula involved the
use of a material deprivation index derived by using a multivariate
statistical technique called Principal Components Analysis (PCA). The use
17
of the new resource allocation formula was meant to guarantee that
districts with higher population figures as well as those with greater poverty levels would be allocated more financial resources compared to
districts with smaller populations and/or lower poverty levels (MoH, 2004).
The demographic and socio-economic variables included in the formula
were obtained from the National Census, the Living Conditions Monitoring Survey (LCMS), and the Health Management Information System (HMIS).
Both the census and the LCMS provided data at two levels; household and individual. District level data were derived from these data sets.
Variables, which would best help in identifying the disadvantaged, were selected from these.
One important variable included was the poverty head count, P0, which is
simply a head count ratio indicating the proportion of people that are
living below the poverty line. Persons who live in households with monthly adult expenditure equivalent of K47,187 ($10) are considered poor,
(MoH, 2004). After applying the PCA, only variables with high communalities were selected for inclusion in the formula. Communalities
are one of the basic statistics used in the PCA to determine reliability of variables, ranging from 0 to 1, with 0 explaining the weakest link. Table 4
shows the variables used in the 2004 resource allocation formula. Table 4: Variables used in deriving the Material Deprivation Index
Variable Source
Poverty Headcount Index LCMS
Proportion of hhds with house of poor material LCMS
Proportion of hhds with no electricity/gas/solar for lighting LCMS
Proportion of hhds with no electricity/gas/solar/candle for lighting LCMS
Proportion of hhds using electricity/gas/solar for cooking LCMS
Proportion of hhds without electricity LCMS
Proportion of hhds without car LCMS
Proportion of hhds without radio LCMS
Proportion of hhds without TV LCMS
Proportion of hhds without plough Census data
Proportion of hhds without safe toilet LCMS
Proportion of hhds without safe water source LCMS
Proportion of hhds more than 5KM to primary school LCMS
Proportion of hhds more than 5KM to food market LCMS
Proportion of hhds more than 5KM to boat/bus/tax transport LCMS
Literacy rate LCMS
Population Census data
Malaria cases reported HMIS
Non bloody diarrhea cases reported HMIS
Eye infection HMIS
Health staff contact rate HMIS
Source: Ministry of Health, 2004
The Principle Components Analysis is a multivariate statistical technique
that permits one to find a linear combination of variables (i.e. Component) that accounts for as much variation in the original variables
18
as possible. It then finds another component, uncorrelated with the first,
which accounts for as much of the remaining variation as possible. The iteration goes on until there are as many components as the number of
the original variables. The expected outcome of this analysis is that a few components will account for most of the variation and these components
can be used to replace the original variables. In the international literature, the principle components analysis is the commonest technique
for deriving a country specific deprivation index. To develop the formula based on this, the ministry of Health worked in collaboration with the
Central Statistical office using an SPSS- Principle Component Analysis.
The deprivation indices were then normalized and used as district population weights as in the formula below, (Normalizing involves adding
a constant to all the districts deprivation indices such that the least number becomes 1 or has zero effect on the population).
DiA = RT*(niMD*Popi)/TwPop Where:
DiA = Weighted resource allocation for district i RT = Total resources available
niMD = material deprivation index normalized for district i Popi= Populations size for district i
TwPop= Total weighted population
Using the formula, districts were then ranked and categorized into quintile as shown in Table 5, with Quintile 1 being the least Deprived districts and
quintile 5 are the most deprived districts: Table 5: 2004 Classification of districts by quintile using District Deprivation
Indices
Source: MoH, 2004.
Note: DI= District Deprivation Index
19
3.6.2 Further Revision in 2008/9
As part of the ongoing revision exercise, in 2008/9 the Ministry of health
made some further revisions to the district resource allocation formula by including factors of geographical deprivation (such as access to facilities)
which were missing in the 2004 formula. When the results, using the same techniques (PCA), were presented after the inclusion of variables on
geographical deprivation, they showed hardly any changes in the components selected after running the PCA technique mentioned above.
However, changes were very visible when it came to the calculated district deprivation indices after inclusion of the additional variables,
(MoH, 2009). Table 6: 2009 Classification of districts by quintile using District Deprivation
Indices
Source: MoH, 2009.
Note: DI= District Deprivation Index
Table 6 above shows the same districts classified by quintile, but now using the material deprivation index after the inclusion of the
geographical variables Compared to the previous table (Table 5), Livingstone has now dropped from first to third position in the first
quintile, with Lusaka appearing as the least deprived district in the country. More importantly to note are districts like Gwembe, Luwingu,
Kasempa and Mwense which were appearing in the third quintile in table
5, and have been pushed to the fifth quintile in table 6 which used the district deprivation indices calculated by the new formula.
In order to compare the effects of the changes on allocations, figure 4
demonstrates the differences in terms of the financial allocations to districts in 2010 as a percentage of the total district recurrent budget
allocation for the whole of Zambia, for 2 situations: using the 2004 formula (assuming it had not been revised), and also using the revised
formula. As can be observed from graph 4, the percentage allocation to
20
district in Eastern, Northern, North-Western and Southern provinces is
higher (red bars) compared to what they would have received had the 2008/09 formula not been applied (blue bars). Three of these four
provinces come out with the largest allocations.
Lusaka Province is the only province that has had a reduced percentage allocation due to the revision of the formula. The remaining three
provinces have similar budget allocations, implying that they were not affected by the changes in the formula: weather this is an improvement in
equity in the distribution of resources, is something that we will come back to partly in chapter four and in the discussion part of this paper.
Figure 4: Comparison in proposed allocation by the two formulae (2004 and
2008/09) using 2010 figures
3.7. Resource allocation in Kenya
An incremental approach to district allocation of health resources has
historically been used in Kenya for resource allocation to the districts.
Kenya introduced a resource allocation criteria formula in an effort to have a more needs based focus in allocation of resources in 2000. This
resource allocation criterion takes into account weighted variables as shown in table 7 below, (Kenya MoH, 2009).
Table 7: Weighted variables in Kenyas’ Resource Allocation Criteria
Source: Kenya MoH, 2009
21
Some challenges faced with this system include poor data quality; high
level of aggregation of data thus obscuring inequities to health and resources occurring at levels below the aggregation level; and inadequate
training of ministry officials in use of the formula leading to errors in allocation, (Chuma and Okungu, 2011).
Budgeting at district level in Kenya occurs during the Annual Operational
Planning (AOP) process and determines the amount of funds requested by the districts. There tends to be disparity between the amounts allocated
using the resource allocation criteria formula and the amount requested by districts based on their AOP process. This is due to the fact that two
processes use different indicators and varied data sources. As opposed to the resource allocation criteria mentioned above; the district budget
requests are based on service delivery rates, case fatality rates, previous funding levels and stock outs in logistics. Districts source this data from
the health management information system (HMIS), their own databases
and from development partners. These non-standardized data sources further contribute to variations in estimating district budget requests,
(USAID, 2010).
Further disparities are observed when the actual disbursements or releases (referred to as authority to incur expenditure: AIE) are compared
with budget requests. In some cases the AIE fell severely short of district budgets by as high as 22.4% in Fiscal Year 2008/2009 for Kisumu East),
(USAID, 2010).
A review of the literature shows that despite the existence of resource allocation criteria formula Kenya still uses the incremental approach for
allocation of health resources. While the resource allocation criteria formula reduces the element of inequity, there is still a predisposition
towards the incremental method due to use of infrastructure and
utilization patterns as part of the variables in the criterion. A more needs based system of allocation would require the use of different indicators,
such as for example population size, infant mortality and under-five mortality, as these have been shown to better promote equity (Chuma
and Okungu, 2011).
22
CHAPTER 4: ASSESSMENT OF FINANCIAL RESOURCE FLOWS FOR HEALTH IN ZAMBIA
4.1. Actual resource flows to districts
4.1.1. Budgets Allocated to Districts
The Ministry of Finance and National Planning (MoFNP) provides budget
projection with ceilings for 3 years under the MTEF to allow ministries, provinces and spending agencies to develop plans within the available
resource envelope. The MoH in this process competes with other ministries/sectors to get a share of the total public funds. Thereafter, the
Ministry of Health provides the strategic focus (derived from the National Development Plan and the National Health Strategic Plan), technical
planning guidelines and budget ceilings to all health institutions annually.
This information is used alongside other locally generated information from such sources as Health Management Information System (HMIS)
and PA reports to prepare action plans, (MoH, 2011).
To develop the ceilings for the districts, the Ministry of health uses the resource allocation formula described in chapter three which assists in
allocating funds according to need. This formula is applied to the recurrent budget of the 60% of health resources that go to districts,
(60% include part of the donor funds that are aligned with government funds through the district basket, but does not include salaries and other
capital funds). The districts then plan for activities in their respective districts, using standard planning guidelines and taking into account the
ceilings given to them by the ministerial headquarters.
Figure 5 and table 8 show the actual Provincial budget allocations to
district health services for the years 2005, 2008, 2010 and 2011. As can be observed, throughout the period under review, Eastern, Northern and
Southern provinces received relatively higher proportions of funds for districts health services in absolute terms compared to other provinces.
The lowest proportions of funds are allocated to Lusaka and North western provinces.
Generally, the figures presented below do not give a clear picture of how
the revised resource allocation formula (implemented in the latter two years: 2010 and 2011) has influenced actual district resource allocations.
The pattern is not consistent and shows fluctuations in some of the provinces over the four years of our interest. Eastern Province is an
example of a province that experienced declining pattern in budget allocation throughout the period under review, even after the revision of
the formula. Others are showing a fluctuating trend (namely; Central,
23
Copperbelt, Lusaka, Nothern and Western provinces) and still others
hardly any change at all (Luapula, NorthWest). Figure 5: Budget allocations to district health services by Province: 2005, 2008,
2010, 2011
The above are aggregated results (for provinces) and a more detailed analysis of the possible trends for individual districts within each province
is attached as annex 1. Table 8: Amounts and percentage allocations to Provinces for district health
services: 2005, 2008, 2010, and 2011
2005 2008 2010 2011
Provinces Budget
(ZMK'M) %
Budget
(ZMK'M) %
Budget
(ZMK'M) %
Budget
(ZMK'M) %
1 Central 1,609 11% 9,197 11% 12,096 9% 15,366 10%
2 Copperbelt 1,480 10% 9,931 12% 14,749 11% 16,116 10%
3 Eastern 2,529 17% 12,569 15% 19,528 14% 21,089 14%
4 Luapula 1,428 10% 7,910 9% 12,841 9% 14,799 10%
5 Lusaka 933 6% 7,422 9% 10,776 8% 12,693 8%
6 North-
Western 1,121 8% 6,495 8% 11,271 8% 12,522 8%
7 Northern 2,336 16% 12,414 15% 20,786 15% 23,570 15%
8 Sorthern 1,783 12% 10,999 13% 21,021 15% 22,336 14%
9 Western 1,409 10% 7,716 9% 13,007 10% 16,376 11%
Total 14,628 84,653 136,074 154,868
Figure 6 shows budget allocations to districts as a percentage of total
Government health budgets for three years, namely; 2008, 2010 and 2011, as well as the recurrent part of those district health budgets, as a
% of total health budget. As can be seen from the graph, the percentage of total district budgets has increased from 34% in 2008 to 40.0% in
2010, after which it increased slightly further to 40.8% in 2011. However, the pattern is different for district recurrent budgets. As a percentage of
total health budgets, districts allocated recurrent budgets increased
24
slightly immediately after applying the revised formula in 2010 to 9.9%
from 8.7% in 2008. In 2011, the percentage allocation to districts recurrent budget dropped down to 8.9%, to almost that of 2008.
Figure 6: Budget Allocation to Districts for Recurrent Budget Only and Total
Budget as a Percentage of Total Health Budget: 2008, 2010, 2011
4.1.2. Budgets Actually Released to Districts
This section assesses the release of funds to the districts, in order to
ascertain whether the initially assigned budgets are actually followed when it comes to release of funds by the Ministry of Health. Table 9
shows the total budget releases to the health ministry against what was initially budgeted for and allocated to health by MoFNP. The table reveals
that, for all the years, except 2011, the releases have been more than the budget allocation to health. The total amount released to districts in 2008
was 9% higher than the total budgeted amount and 11% higher in 2010. In 2011 however, the total release of funds to budgets was 12% below
the budgeted amount (at 88%), partly because of the reasons mentioned in the methodology section for 2011 releases.
Depending on the demands of the ministry within a financial year,
additional funds, called supplementary funding, is made available by the MoFNP to enable the ministry to adequately address its needs. To a
certain extent, this depends on the absorption capacities of the different
departments/units within the ministry. If their absorption capacities are low, the demands will be low and hence releases will be less as well.
Table 9: Total releases to health against total budget allocation to health from
MoFNP: 2005, 2008, 2010, and 2011
Year Budget (ZMK) Release (ZMK) % released
2005 415,547,306,951 445,343,947,811 107%
2008 973,755,811,587 1,059,412,003,244 109%
2010 1,371,692,096,312 1,522,786,600,746 111%
2011 1,758,592,077,757 1,546,483,989,381 88%
25
Funds released to districts do not always correspond to districts initial
allocations and are mainly determined by the actual resources available for disbursement to districts which depends on monthly releases from the
Ministry of Finance and National Planning. If the resources available for disbursement is reduced or increased by a certain percentage,
subsequently the district allocations are affected accordingly.
Figure 7 compares the percentage of actual releases to districts for total budgets and total recurrent budgets for the years 2008, 2010 and 2011.
Although there are differences between the actual allocation to districts and what they actually receive for all the three years, one can notice from
table 9 and figure 7 that funds released to districts somehow correspond to the total releases to MoH from MoFNP. However, the recurrent budgets
suffer more from cuts since the salaries are mostly paid from state budgets, whereas recurrent budgets depend also on basket funds.
Figure 7: Comparison of Total District Budget Releases with Districts Recurrent
Budget Releases: 2008, 2010, 2011
When it comes to allocating funds to district recurrent budgets, the Ministry uses the resource allocation as was stated above. Therefore
recurrent budget becomes very important throughout this paper as it is at the centre of functional service delivery for district in Zambia, and is the
budget subjected to the formula. Figure 8 compares percentage releases of district recurrent budgets as a percentage of total district recurrent
budget allocation for 2010 and 2011. Despite, the total district releases
being high, low attention is given to recurrent costs as can be demonstrated by the lower recurrent budget releases for both years.
26
Figure 8: Percentage Districts Recurrent Budget Releases of Total Allocated
District Recurrent Budget, 2010 and 2011
To give a clearer picture of the districts recurrent budget releases, table
10 provides information on budget performances and compares releases against actual allocations for district recurrent budgets in 2005, 2008,
2010 and 2011. The table shows that most of the districts are likely to be in the same percentage range in each financial year. If there is a
reduction in the amount of budget available for release to the districts, the loss is shared proportionately across all district budgets, and vise-
versa for increased budgets. Table 10: Districts by Percentage range of Recurrent Budget Released of Total
Districts Recurrent Budget Allocation, 2005, 2008, 2010, and 2011
% range Number of districts
2005 2008 2010 2011
100+ 72 0 4 0
81-100 0 72 67 0
61-80 0 0 1 0
41-60 0 0 0 72
=/<40 0 0 0 0
Importantly to note in Table 10, is how 2011 releases differ from the
other years under review. However, the withdrawal of donor support to the district basket in early 2009, did not affect government releases to
districts as evidenced from the 2008 and 2010 figures, which shows hardly any differences.
4.1.3. Budget execution (actual expenditure)
Intra-district Expenditure As part of the planning process, guidelines have been developed for the
purposes of expenditures at district levels. The districts are able to determine what amount to spend on specific activities in line with the laid
27
down expenditure patterns outlined in the guidelines, (MoH, 1992, 2010).
The guidelines, as highlighted in chapter 3, allow some degree of flexibility in expenditure levels by providing ranges within which
appropriate expenditures can be made.
Table 11 shows that most funds are expended on health centre activities with 49%, 46% and 42% in 2008, 2010 and 2011, respectively. The
lowest expenditures, as can be observed from the table, are made on community level activities, as per guidelines. Interesting about the results
in this table is that, although health centres have been allocated the most resources, their allocation has been reducing over the three years,
whereas funds allocated to districts health offices for administration has been increasing. Others have remained almost constant.
However, it is important to note that figures highlighted do not include
other sources of funding outside the basket. The districts also receive
direct funds from sources such as the Global Fund, GAVI and other donors, NGOs, user fees, the private sector and others, which do not go
through the basket. Table 11: District Health services Expenditure analysis by level of delivery,
2008, 2010 and 2011
2008 2010 2011
Per level ZMK’ in
Million %
ZMK’ in
Million %
ZMK,
in
Million
%
DHO 11,301 15% 21,961 19% 18,072 22%
Hospital 17,019 22% 23,530 21% 19,236 23%
Health Centre 38,011 49% 53,226 46% 35,239 42%
Community 11,273 14% 16,172 14% 10,591 13%
Total 77,604 100% 114,889 100% 83,138 100%
4.2. Conformity to Resource Allocation Criteria and Guidelines
4.2.1. Overall District Allocation
As it has been stated in chapter 3, health sector allocation stipulates that 60% of all public health funds should be allocated to districts in order to
enable them provide adequate care to their client/communities. The total allocation to the district as a percentage of total health budgets increased
from 34% in 2008 to about 40% in both 2010 and 2011, (refer to Figure 6). Although the district budget is increasing, it is still far below the
recommended 60% of public resources to districts by the Ministry of Health guidelines for district allocation. As stated earlier, in some cases,
this is even made worse by the releases being lower than the actual budget, for instance 2011, which only received 92% of the allocated
budget to districts. The picture may however, not be complete as these
28
funds do not include vertical and other earmarked funds flowing to the
districts. Table 12 shows percentage differences of proposed 60% allocation to the
actual allocated resources to districts. The difference has been going down from 43% in 2008 to 33% in 2010 to about 32% in 2011. This is
simply because the allocated proportion has been increasing over the three years reviewed.
Table 12: Actual Allocation to Districts against Proposed Allocation (60%),
2008, 2010 and 2011
Year
Total
Budget
(ZMK’M)
Proposed Target
Allocation 60%
(ZMK’M)
Actual
Allocation to
Districts
(ZMK’M)
% Actual
allocation to
total health
budget
%
Difference
2008 973,756 584,253 331,331 34.0% 43.2%
2010 1,371,692 823,015 548,816 40.0% 33.3%
2011 1,758,592 1,055,155 718,229 40.8% 31.9%
Secondly, according to allocation guidelines (figure 3), the total allocated
funds to districts is broken down as follows: 30% recurrent budget; 25% to drug; 15% capital; and 30% personnel Emoluments. However for the
purpose of this paper, the focus will be on recurrent budget which is distributed using the formula of interest to this paper.
Although guidelines are there, they are usually not followed when it
comes to actual allocation of resources to district recurrent budgets. What makes it even worse is the fact that releases are even much lower than
the allocated amounts, as can be observed from figure 8.
A comparison of actual allocation against proposed allocation of district recurrent budgets shows that allocations do not conform to developed
guidelines/formula. For the three years (2008, 2010 and 2011) districts
were allocated lower than the proposed ones, with 2011 having the largest percentage difference of 27%.
Table 13: Actual Allocation vs. Proposed Allocation to District Recurrent Budget,
2008, 2010, 2011
Year
Allocation
to Districts
(ZMK’M)
Proposed
Recurrent
budget Target
allocation 30%
(ZMK’M)
Actual
allocated
Recurrent
Budget
(ZMK’M)
% of
Actual
allocation
to Total
Districts
Budget
%
Difference
2008 331,331 99,399 84,653 25.5% 14.8%
2010 548,816 164,645 136,074 24.8% 17.4%
2011 718,229 215,469 156,468 21.8% 27.4%
After the total amount for recurrent budgets for districts has been
established, is the MoH then subjects it to a districts resource allocation
formula in order to ascertain exactly how much is allocated to each
29
district in Zambia. Figure 9 shows the percentage distribution of public
sector district health resources per province in 2010 and compares actual allocation to the proposed allocation according to the resource allocation
criteria.
Although the formula has been developed, it is evident that the actual allocation of resources does not conform to the formula based allocation.
Except for North Western Province whose allocation is in conformity with the formula, some provinces (like Eastern, Northern, Central and Luapula)
received lower amounts than the formula based figures, whereas others (like Copperbelt, Lusaka, Southern and Western) received more than the
required amounts according to the formula. Figure 9: Actual Vs. Formula Based Percentage Allocation to District Health
Services per Province Using the Revised Formula, 2010
Table 14 is more detailed and shows the use of the newly revised
resource allocation criteria in the calculation of district allocations for recurrent budgets. Only three districts (Nyimba, Kawambwa and Serenje)
out of the 72 districts in Zambia were allocated funds in conformity with the resource allocation formula. The picture clearly shows that in most
cases the actual allocations do not match with the formula based allocations. Although Lusaka was allocated the largest share in absolute
terms, Livingstone had the widest discrepancy between actual allocation and formula based allocation, receiving 307% above the formula based
figure. On the other hand, Mpika, Isoka and Mumbwa were the most
disadvantaged districts with actual allocations being 48% less than the formula based allocation in all the three districts.
30
Table 14: Weighting the population (2010) with normalised Material Deprivation Index for 2010
District MDI Normalised
Mat Dep Index Score
Population 2010
Weighted Population
% share of Population
(2010)
Proposed Allocation
(2010) ZMK'M
Actual Allocation,
(2010) ZMK'M
Proposed Allocation
Variance (ZMK'M)
% Difference
Livingstone -4.24 1.41 139,509 196,708 0.3% 434 1,765 -1,331 -307%
Chililabombwe -3.84 1.81 91,833 166,218 0.3% 367 1,279 -912 -249%
Luangwa 1.06 6.71 24,304 163,080 0.3% 360 1,235 -876 -243%
Mambwe 0.15 5.8 68,918 399,724 0.6% 882 1,845 -963 -109%
Luanshya -3.68 1.97 156,059 307,436 0.5% 678 1,379 -700 -103%
Mufulira -3.62 2.03 162,889 330,665 0.5% 729 1,366 -636 -87%
Kitwe -4.53 1.12 517,543 579,648 0.9% 1,279 2,392 -1,113 -87%
Sesheke 0.5 6.15 99,384 611,212 1.0% 1,348 2,502 -1,153 -86%
Mazabuka -1.63 4.02 230,972 928,507 1.5% 2,048 3,556 -1,508 -74%
Zambezi 1.04 6.69 80,306 537,247 0.9% 1,185 2,056 -871 -73%
Kafue -3.68 1.97 227,466 448,108 0.7% 989 1,696 -708 -72%
Mufumbwe 0.58 6.23 58,062 361,726 0.6% 798 1,347 -549 -69%
Lusaka -4.65 1 1,747,152 1,747,152 2.8% 3,854 6,350 -2,496 -65%
Chilubi 1.34 6.99 81,248 567,924 0.9% 1,253 1,913 -660 -53%
Gwembe 1.26 6.91 53,117 367,038 0.6% 810 1,190 -380 -47%
Itezhi-tezhi 0.35 6 68,599 411,594 0.7% 908 1,330 -422 -46%
Chavuma 1.66 7.31 35,041 256,150 0.4% 565 824 -259 -46%
Masaiti -0.1 5.55 103,857 576,406 0.9% 1,272 1,828 -557 -44%
Namwala 0.65 6.3 102,866 648,056 1.1% 1,430 2,000 -570 -40%
Milengi 1.37 7.02 43,337 304,226 0.5% 671 927 -256 -38%
Kalulushi -2.94 2.71 100,381 272,033 0.4% 600 810 -210 -35%
Kabwe -3.13 2.52 202,360 509,947 0.8% 1,125 1,469 -344 -31%
Chingola -3.51 2.14 216,626 463,580 0.8% 1,023 1,309 -287 -28%
Mporokoso 1.03 6.68 98,842 660,265 1.1% 1,457 1,832 -375 -26%
Chadiza 1.1 6.75 107,327 724,457 1.2% 1,598 1,923 -325 -20%
31
Lufwanyama 0.96 6.61 78,503 518,905 0.8% 1,145 1,332 -187 -16%
Kabompo 1.26 6.91 92,321 637,938 1.0% 1,407 1,609 -202 -14%
Chinsali 1.29 6.94 146,518 1,016,835 1.6% 2,243 2,558 -315 -14%
Mkushi -0.31 5.34 154,534 825,212 1.3% 1,820 2,047 -227 -12%
Lukulu 1.33 6.98 86,002 600,294 1.0% 1,324 1,448 -124 -9%
Ndola -3.81 1.84 451,246 830,293 1.3% 1,832 1,986 -154 -8%
Chama 1.06 6.71 103,894 697,129 1.1% 1,538 1,651 -113 -7%
Chiengi 1.4 7.05 114,225 805,286 1.3% 1,777 1,893 -117 -7%
Kazungula 1.05 6.7 104,731 701,698 1.1% 1,548 1,638 -90 -6%
Kalabo 1.31 6.96 128,904 897,172 1.5% 1,979 2,070 -91 -5%
Siavonga 1.05 6.7 90,213 604,427 1.0% 1,333 1,393 -60 -4%
Samfya 0.69 6.34 198,911 1,261,096 2.0% 2,782 2,850 -68 -2%
Mungwi 1.5 7.15 151,058 1,080,065 1.8% 2,383 2,424 -41 -2%
Nyimba 0.7 6.35 85,025 539,909 0.9% 1,191 1,193 -2 0%
Kawambwa 0.54 6.19 134,414 832,023 1.3% 1,835 1,838 -2 0%
Serenje 1.1 6.75 166,741 1,125,502 1.8% 2,483 2,479 4 0%
Kasempa 1.15 6.8 69,608 473,334 0.8% 1,044 1,003 41 4%
Sinazongwe 0.34 5.99 101,617 608,686 1.0% 1,343 1,285 58 4%
Solwezi 0.27 5.92 254,470 1,506,462 2.4% 3,323 3,100 223 7%
Shangombo 1.39 7.04 93,303 656,853 1.1% 1,449 1,346 103 7%
Kaputa 1.38 7.03 119,514 840,183 1.4% 1,853 1,718 136 7%
Kaoma 0.88 6.53 189,290 1,236,064 2.0% 2,727 2,510 217 8%
Katete 0.67 6.32 243,849 1,541,126 2.5% 3,400 3,084 315 9%
Monze -0.29 5.36 191,872 1,028,434 1.7% 2,269 2,043 226 10%
Senanga 1.07 6.72 126,506 850,120 1.4% 1,875 1,638 238 13%
Choma -0.43 5.22 247,860 1,293,829 2.1% 2,854 2,449 405 14%
Kasama 0.09 5.74 231,824 1,330,670 2.2% 2,936 2,502 433 15%
Mansa 0.56 6.21 228,392 1,418,314 2.3% 3,129 2,666 463 15%
Chongwe -1.46 4.19 192,303 805,750 1.3% 1,778 1,494 283 16%
32
Mbala 0.78 6.43 203,129 1,306,119 2.1% 2,881 2,325 557 19%
Petauke 0.55 6.2 307,889 1,908,912 3.1% 4,211 3,389 822 20%
Mwense 1.25 6.9 119,841 826,903 1.3% 1,824 1,428 396 22%
Mpongwe 1.09 6.74 93,380 629,381 1.0% 1,388 1,069 319 23%
Lundazi 1.04 6.69 323,870 2,166,690 3.5% 4,780 3,548 1,232 26%
Nakonde 0.29 5.94 119,708 711,066 1.2% 1,569 1,156 413 26%
Kapiri Mposhi 0.23 5.88 253,786 1,492,262 2.4% 3,292 2,366 926 28%
Mpulungu 0.77 6.42 98,073 629,629 1.0% 1,389 977 412 30%
Kalomo 0.41 6.06 258,570 1,566,934 2.5% 3,457 2,372 1,085 31%
Mongu 0.13 5.78 179,585 1,038,001 1.7% 2,290 1,494 796 35%
Chibombo -0.51 5.14 303,519 1,560,088 2.5% 3,442 2,158 1,284 37%
Mwinilunga 1.39 7.04 137,236 966,141 1.6% 2,131 1,332 799 37%
Luwingu 1.16 6.81 122,136 831,746 1.3% 1,835 1,021 814 44%
Nchelenge 1.03 6.68 152,807 1,020,751 1.7% 2,252 1,238 1,014 45%
Chipata -0.17 5.48 455,783 2,497,691 4.0% 5,510 2,895 2,615 47%
Mpika 0.07 5.72 203,379 1,163,328 1.9% 2,566 1,347 1,219 48%
Isoka 0.75 6.4 138,158 884,211 1.4% 1,951 1,013 937 48%
Mumbwa 0.45 6.1 226,171 1,379,643 2.2% 3,044 1,576 1,467 48%
Source: MoH, 2010 budget allocation
33
4.2.2. Intra-District Allocation
Figure 10 gives an overview of how the total districts allocation is broken
down by cost items for 2008, 2010 and 2011. According to the guidelines provided above in figure 3, 30% is to be allocated to recurrent costs, 30% to
PEs and 40% collectively to Drugs and Capital costs. The allocations therefore, do not exactly match with the allocation criteria set by the
Ministry of Health. Much more funds than originally planned are spent on Personnel Emoluments, leaving lesser proportions of funds to recurrent as
well as drugs and capital costs. Figure 10: Percentage Distribution of District Allocation of Funds by Cost Items:
2008, 2010, 2011
The Districts only have total control of the recurrent budgets, whereas drugs
and capital funds are mainly controlled by the Ministry of Health Headquarters and the MSL for drugs. Salaries as shown by figure 1, are
allocated directly from the Ministry of Finance and National Planning. The table 15 below therefore, summarizes district expenditure patterns for only
recurrent budgets for 2008, 2010 and 2011, and reveals that to some extent district expenditure patterns have been slowly departing away from the
allocation criteria within districts, by increasingly allocating more funds on District Health Offices administrative costs. In 2011 it was worse, with health
centers allocation going below the threshold. Communities have also been receiving more than recommended allocations throughout the years under
review. These not-withstanding, allocations to hospitals and health centres
have been more in line with the guidelines, albeit at the lower limits of the range indicated.
34
Table 15: Actual Vs. Recommended Intra-District Allocation per Level of Service
Delivery within Districts, 2008, 2010, 2011
Recommended
% Allocations 2008 2010 2011
Per level % % %
DHO 15% 15% 19% 22%
Hospital 20-40% 22% 21% 23%
Health Centre 45-60% 49% 46% 42%
Community 10% 14% 14% 13%
35
CHAPTER 5: DISCUSSION
5.1. Introduction of the Conceptual Framework
The discussion is centered around the findings of this paper from the previous chapters and attempts to assess the financial resource allocation
criteria in Zambia from an equity perspective. Equity, or need variables
become extremely important in the development and implementation of a need-based resource allocation formula. The most widely used parameters
to measure the relative needs of health care services across regions or geographical areas are:
i. Population size;
ii. Demographic structure and composition of the population; iii. The disease situation in the population; and
iv. Socio-economic status, which includes poverty levels of the specified region, (Mclntyre D. et al. 2008).
Therefore, the discussions will be guided by the above mentioned
parameters, with the inclusion of two other parameters, namely; i). Levels of service use, and ii). Differing costs, (Pearson, 2002). These parameters will
together form our framework for discussion and will be developed around
the following considerations of equity.
5.2. Assessment of the Formula
5.2.1. Need related to population size
In a country like Zambia where resources are limited and scarce, the need to link geographical distribution of resources with population is of no doubt
extremely important. The findings have shown that population is much incorporated in the both formulae of 2004 and 2009. Population is actually
used at two stages; firstly the district populations are in the computation of the district material deprivation index, and secondly weighted population,
which is obtained by multiplying the normalized index score by the district population, is used to calculate percentage shares of the available resource.
The population therefore, is a major determinant of how much resources are
to be allocated. Example is Lusaka which was ranked the wealthiest district in 2010 based on its MDI, was proposed to be allocated 2.8% of the
resources compared to 0.4% and 1.7% for Chavuma and Mungwi districts, respectively which were ranked the most deprived in that order. This is
because Lusaka, despite being wealthier, has a much larger population than
36
the two districts. Chavuma, despite being the poorest, has a population of
on 35, 041 inhabitants compared to Lusaka about 1,747,000 inhabitants. In the same way, Livingstone which was ranked third wealthiest district was
proposed to get only 0.3% because of its small population and a low MDI.
However, although population density is indirectly incorporated in the formula by the inclusion of access indicators such as households‟ proximity
to the nearest primary school, food market and boat/bus/tax transport, it is not directly and adequately covered, as was in the case of the1994 formula,
highlighted above. Population density is an important consideration in the distribution of resources across districts as the provision of health services
for a sparsely populated area tends to differ from that with a closely populated area. The limitation to this is the unreliability of the population
figures during inter-censual period. The projected figures computed by the Central Statistical Office are seen as not being accurate and usually differ
from head counts conducted by districts themselves in most areas.
5.2.2. Need related to demographic composition
Although the composition of the population, in terms of age and sex
structures, is considered important by other countries, including Kenya which is using under 5 and women in reproductive age as some of the
variables, Zambia has not attempted to incorporate this into all its formulae. These variables were initially suggested by RASC for inclusion in the 2004
formula, but have been ignored up to date, (MoH, 2006). It‟s a commonly used assumption that children under 5 years old and older population 65+
years, are more prone to ill health and hence tend to demand more health care services than other age group. On the other hand pregnant women
have unique demands for health services, and hence a need-based formula needs to take this into consideration. Provincial population pyramids in
Zambia show consistently higher proportions of women and under 5 years
population in rural and remote provinces than in urban provinces. As mentioned earlier (chapter 1), children below age of 15 years make up
45.4% of the total population, and the age group constitute 48.6% of the total population in the rural areas and 40.5% of the total population in the
urban areas. Similarly, the elderly population 65 years and above, make up 3.2% of rural population and 1.8% of urban population, (CSO, 2010). Worse
still, secondary and tertiary health facilities are situated in the urban residences/provinces leaving the children and women in the rural areas
handicapped.
37
5.2.3. Need related to disease situation/health indicators
The formula does not show a clear link between the districts epidemiological
situation and the allocation of resources to district. Although a few disease indicators were included in the list of variables for deprivation index, they
were not retained by the PCA since disease patterns were not responsible for much of the variation between districts. The material deprivation
component, which accounted for the highest variation (58%) among districts was selected and was mainly associated with assets owned by households
such as proportions of households with no electricity/gas/solar/candle for lighting etc, (MoH, 2004). This whole process makes the formula very
unclear, and in a way disadvantages districts with high disease cases such as Kaputa, which experiences cholera outbreaks every year.
Secondly, even if a few health indicators were included on the initial list,
they were more from preventive disease and such indicators are more
appropriate for planning purposes, which is the second phase after allocation of resources using the formula. In addition such indicators are likely to
create perverse incentives since the generation of these figures start at facility levels to districts and going upwards. Even when measures to
eliminate them are to be taken, they will continue to influence the formula until it is revised to remove them. For this reason, and in line with the
demographic composition section discussed above, districts maternal and child health indicators would be more appropriate to include in the formula.
5.2.4. Need related to socio-economic status
The extent to which poverty indicators are reflected in the financial resource
allocation criteria is very important in addressing equity in provision of services. As stated above, the poor people are faced with the greatest
burden of ill health and so any need based allocation needs to take cognizant
of this. On the other hand, Zambia has vast land with some of the very remote rural areas found far from health facilities, making it difficult for
people to access services. According to the results, the formula has attempted to address this by incorporating households poverty related
variable, including literacy levels. The MDI used in Zambia tend to use more socio-economic indicators than any other indicators. Table 4 above showing
the variables used in deriving the MDI has more poverty related indicators than others, most of which are on ownership and use of amenities. As a
result of this the resource allocation tend to favour rural and remote areas more because of their relatively high poverty levels only, and leaving out
other important considerations unique to urban districts.
38
5.2.5. Levels of Present Service Use
Other than just looking at needs from the client‟s perspective, in part, it is
also important for resource allocation to be facility based (Pearson, 2002). As an example Kenya‟s resource allocation formula has attempted to take
this into consideration by including bed use and outpatient case load. Although in Zambia, guidelines stipulate that hospitals receive 20-40% and
health centres receive 45-60%, it is not clear how these figures were arrive at, and the process does not also give enough information on which facilities
need more resources based on service utilization and workload. This makes the allocation not being quite transparent and unreliable to most
stakeholders. In some cases Zambia uses number of beds as a criterion for allocating resources to hospitals, but the common argument to using the
number of beds alone, is that this does not differentiate facilities that are busy from those that are less or not busy at all, (DFID, 2002). On the other
side, inclusion of such indicators in a formula for hospitals may create
perverse incentives to increase average length of stay of patients. Therefore, if this is not adequately taken care of in a resource allocation formula, it is
likely to affect the supply side of service delivery as it would directly impact on the quality of services provided, especially for facilities with high levels of
workload, but receiving relatively low amounts of funds.
5.2.6. Differing Costs
The cost of providing health services to a population varies from one geographical area to another depending mostly on remoteness. The 1994
formula for Zambia, included fuel pricing as a proxy for cost differentials. However, the current formula does not clearly show how cost differentials
have been incorporated in the resource allocation formula. For instant, the proportion of households living more than 5km to boat/bus/taxi transport
gives an indication of the population with access to transportation, but does
not tell us anything about the cost of using a boat/bus/taxi across regions. Besides, health personnel are also majorly affected by higher costs as they
spend more on transportation to get them to work places than those in areas with lower cost, but getting same salaries. Therefore, in order to try and
motivate personnel equally across districts, this aspect has to be taken into consideration in the current formula
5.3. Implementation of the Resource Allocation Formula
The unavailability of reliable statistics at district level makes the
implementation of the resource allocation criteria very difficult. Most of the information in the formula and variables used to compute the MDI are
collected through the Census or surveys. This makes the information
39
outdated after some times resulting in people at district levels losing
confidence in the output of the formula itself.
Secondly, although the formula is there and used during the planning and budgeting process, the actual allocations do not always conform to the
formula based allocations. It is just used as a starting point after which other considerations are made which cannot be explained by the formula. The
actual allocation is hence done in a manner which is not very transparent. Some districts like Livingstone and Chilabombwe were allocated much more
than they are expected to get, and only 3 out of 72 districts were allocated in conformity with the formula in 2010, (refer to table 14). The reasons for
these discrepancies are not explained. This situation continues to happen because there are uncertainties to how policy makers would react to sudden
cutting of budgets from urban districts. Therefore, with the resource envelope remaining the same, it becomes impossible to adjust the figures
for urban districts without affecting the rural districts. Secondly, there were
arguments with MoH that if funds were to reduce drastically, it would impact negatively on service delivery and those districts which would receive
sudden increases in budgets would face problems of absorption capacities, (Chitah and Masiye, 2010).
Thirdly, the resource allocation formula does not take into account districts
other sources of funds. Although, user fees have been abolished for all primary care, districts still receive funds from various sources such as the
mine companies in the Copperbelt and North-Western provinces, Non-Governmental Organizations (NGOs) and also vertical funding such as the
Global funds and other Cooperation Partners (CPs) who choose to fund the sector vertically. Some districts tend to benefit more than others since in
most cases donors opt to start by piloting their interventions in selected districts e.g. the eighteen (18) districts of Performance Based Financing in
Zambia. It is often argued that donor funds exert some positive fungibility
effects on local funds, which results in re-allocating local funds to other needy and crucial areas. However, if the funding structure is disintegrated, it
is unlikely for a system to realize this objective as funds from different sources may unknowingly be spent on the same area or district. Besides, the
proportion of funds subjected to the resource allocation formula is too small since recurrent budgets are now almost purely publicly funded, following the
withdrawal of donor support to the basket and the collapse of the SWAp in 2009, (refer to figure 3).
Lastly, despite having revised the formula in 2008/09, there is still no
emphasis on the need to review and update the formula over time. Zambia is a rapidly urbanizing country with the levels of urbanization varying from
one province/district to another. At the moment there is enough new
40
information from the 2010 Living Conditions Monitoring Survey, HMIS and
Census, of which most of it has not been factored into the formula to update the MDI. Moreover, as stated in chapter 1, the resource allocation technical
working group to conduct periodic reviews of the formula and oversee the implementation process no longer exists. The implementation of the formula
has been left in the hands of a few officers at the MoH, some of whom have little understanding of it. It therefore becomes very difficult to suggest ways
of improving the formula or do periodical reviews for further suggestions on the formula.
41
CHAPTER 6: CONCLUSION AND RECOMMENDATIONS
6.1. Conclusion
The manner in which health resources are allocated to different geographical
areas is very important in meeting societal needs and at the same time responding to societal rights. If health care is viewed as a right, ethical
principles need to be employed in the determination of the nature and structure of its delivery system. Therefore, developing a mechanism to
allocate resources in a more scientific and transparent manner becomes a major step in realizing this objective, especially in a low income country like
Zambia, where health resources are limited. However, it is clear that the Resource allocation formula/criteria to district health services in Zambia has
not comprehensively covered all needy areas. The formula seems to have focused much more on poverty levels and remoteness of districts, and
leaving out other important considerations/needy areas mentioned in the
discussion above. Although the 2009 formula introduced issues of geographical deprivation, it brought little added value on the ground in as
far as equitable allocation of resources is concerned. The real concerns, which would include linking disease occurrence as well as demographic
composition variables (mentioned in the above discussion) to the formula, remain untouched. For as long as these variables are not adequately
incorporated in the formula, the allocation will continue to provoke debates and doubts among all stakeholders including the policy makers.
Another thing coming out clear is that the implementation process of the
formula is not closely monitored. The actual allocation still remains unclear and does not conform to the indicative figures derived from the formula. The
situation is further worsened by the fact that released funds, in most cases, are not in conformity with actual allocation. Therefore, as efforts to further
revise the formula continue to be made, focus should also be placed on
possible ways of strengthening the implementation of formula so as to make it into a workable criteria and not simply an academic exercise as it appears
to be.
Not-with-standing the above, the question is, should Zambia continue to invest in revising an input based financing mechanism, or should seriously
consider shifting completely or partially towards output based financing mechanisms such as the Performance based financing (PBF)?
42
6.2. Recommendations
i. The Government of Zambia and CPs to explore ways of integrating resources and support to the health sector (or at least their monitoring)
in order to avoid fragmentation of support, which dilutes the whole purpose of the resource allocation formula,
ii. A team of experts to carry out a further revision exercise to incorporate age/sex variables and properly link disease burden to the formula and
other parameters mentioned in the discussion, to the extent that these variable cause population independent variations,
iii. The MoH to collaborate with the Central Statistical Office and other institutions conducting surveys in the data collection process so as to
include relevant information to the formula and improve timeliness of data collection and dissemination,
iv. The Ministry of Health to continue building capacities at district and
other levels on Health Management Information System (HMIS) so as to strengthen the data collection and analysis processes in order to have
timely and reliable data,
v. There is a need to put in place a Resource Allocation Technical Working
Group (RATWG) to oversee the implementation process of the resource allocation formula:
vi. The formula need to be simplified so as to make it more easily
understandable by everyone involved in the allocation, including all stakeholder. This will increase transparency in resource allocation.
vii. The MoH should continue to explore possibilities of linking resource allocation to service output/production as in PBF,
viii. The allocation of resources being just one strategy of promoting equity, the MOH could also look at actual use of public expenditures
through benefit incidence analysis (BIA), as a further mechanism to
validate any future changes in allocation formulas.
43
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47
Appendices
Annex 1: Districts Recurrent Budgets and Releases, 2005, 2008, 2010, and 2011
Institution
2005
(ZMK’M)
2008
(ZMK’M)
2010
(ZMK’M)
2011
(ZMK’M)
Districts Budget Released Budget Released Budget Released Budget Released
1 Kabwe Urban 131 135 1,251 1,147 1,469 1,224 1,980 1,052
2 Kapiri-Mposhi 345 353 1,656 1,518 2,366 1,972 2,913 1,364
3 Chibombo 420 421 2,014 1,846 2,158 1,798 3,278 1,642
4 Mkushi 194 208 1,021 936 2,047 1,672 2,059 975
5 Mumbwa 268 275 1,360 1,246 1,576 1,313 2,534 1,280
6 Serenje 251 257 1,894 1,737 2,479 2,066 2,603 1,250
Central 1,609 1,650 9,197 8,431 12,096 10,045 15,366 7,563
7 Ndola-Urban 324 330 1,807 1,656 1,986 1,655 2,619 1,368
8 Chingola 101 103 901 826 1,309 1,091 1,626 703
9 Kalulushi 62 64 499 458 810 675 913 503
10 Kitwe 195 200 1,701 1,560 2,392 1,993 2,413 1,323
11 Luanshya 88 90 779 714 1,379 1,114 1,326 706
12 Lufwanyama 121 125 668 612 1,332 1,349 1,346 736
13 Masaiti 136 145 909 833 1,828 1,523 1,923 1,048
14 Mpongwe 322 347 1,293 1,185 1,069 891 1,360 717
15 Mufulira 88 94 776 711 1,366 1,607 1,403 754
16 Chililabombwe 44 46 598 553 1,279 1,066 1,187 656
Copperbelt 1,480 1,544 9,931 9,108 14,749 12,964 16,116 8,515
17 Chipata 605 622 2,759 2,529 2,895 2,413 3,890 2,039
18 Chama 163 171 820 752 1,651 1,351 1,623 839
19 Chadiza 179 184 932 854 1,923 1,602 1,895 996
20 Katete 364 372 2,340 2,145 3,084 2,569 3,314 1,836
21 Lundazi 500 512 2,214 2,029 3,548 2,898 4,003 2,115
22 Mambwe 87 89 526 482 1,845 1,538 1,008 534
23 Nyimba 136 139 733 672 1,193 994 1,445 777
24 Petauke 494 505 2,245 2,058 3,389 2,824 3,911 2,122
Eastern 2,529 2,594 12,569 11,522 19,528 16,188 21,089 11,257
48
Institution
2005
(ZMK’M)
2008
(ZMK’M)
2010
(ZMK’M)
2011
(ZMK’M)
25 Mansa 315 322 2,203 2,020 2,666 2,222 3,210 1,717
26 Kawambwa 181 184 944 866 1,838 1,490 1,878 1,007
27 Chiengi 156 161 856 784 1,893 2,023 2,067 1,118
28 Milenge 54 55 380 348 927 773 922 472
29 Mwense 199 203 1,012 928 1,428 1,190 1,926 1,092
30 Nchelenge 212 217 1,051 963 1,238 1,031 1,926 1,010
31 Samfya 311 318 1,463 1,341 2,850 2,363 2,871 1,611
Luapula 1,428 1,459 7,910 7,250 12,841 11,092 14,799 8,027
32 Lusaka Urban 559 570 4,445 4,075 6,350 5,097 7,861 4,264
33 Luangwa 35 35 303 278 1,235 1,030 1,237 668
34 Chongwe 203 207 1,739 1,594 1,494 1,245 1,904 965
35 Kafue 137 141 934 857 1,696 1,462 1,691 777
Lusaka 933 953 7,422 6,803 10,776 8,833 12,693 6,673
36 Solwezi 373 388 2,400 2,200 3,100 3,287 3,371 1,812
37 Kabompo 142 145 760 697 1,609 1,341 1,562 866
38 Kasempa 99 101 578 530 1,003 836 1,201 580
39 Mwinilunga 234 239 1,146 1,051 1,332 1,110 2,155 1,151
40 Chavuma 61 62 402 368 824 687 829 416
41 Zambezi 127 129 685 628 2,056 1,797 2,058 1,084
42 Mufumbwe 87 88 524 480 1,347 1,094 1,346 744
North-Western 1,121 1,152 6,495 5,954 11,271 10,151 12,522 6,652
43 Kasama 279 285 1,379 1,264 2,502 2,017 2,773 1,420
44 Chinsali 246 251 1,183 1,085 2,558 2,131 2,484 1,349
45 Isoka 186 189 924 847 1,013 844 1,959 1,058
46 Kaputa 170 173 849 778 1,718 1,432 1,764 1,005
47 Chilubi 133 136 700 642 1,913 1,594 2,255 1,234
48 Luwingu 147 151 766 702 1,021 851 1,600 895
49 Mbala 277 283 1,329 1,219 2,325 1,937 2,699 1,360
50 Mpika 271 276 1,262 1,156 1,347 1,123 2,236 1,262
51 Mporokoso 142 145 763 699 1,832 1,526 1,792 1,002
52 Mpulungu 131 133 689 631 977 814 1,353 713
49
Institution
2005
(ZMK’M)
2008
(ZMK’M)
2010
(ZMK’M)
2011
(ZMK’M)
53 Mungwi 223 227 1,735 1,590 2,424 2,015 2,614 1,463
54 Nakonde 132 135 836 766 1,156 963 1,641 845
Northern 2,336 2,385 12,414 11,380 20,786 17,248 25,170 13,606
55 Livingstone 45 46 719 659 1,765 1,471 1,227 616
56 Gwembe 63 64 431 395 1,190 963 1,190 652
57 Itezhi-tezhi 82 83 508 466 1,330 1,088 1,333 751
58 Kalomo 286 295 1,449 1,328 2,372 1,977 2,696 1,467
59 Kazungula 128 131 704 645 1,638 1,365 1,642 921
60 Choma 266 272 1,481 1,357 2,449 1,933 2,937 1,562
61 Mazabuka 288 294 2,170 1,989 3,556 3,110 3,692 1,882
62 Monze 259 265 1,338 1,226 2,043 1,702 2,620 1,465
63 Namwala 147 150 839 769 2,000 1,711 1,993 1,118
64 Siavonga 90 93 575 527 1,393 1,154 1,406 763
65 Sinazongwe 128 148 786 721 1,285 1,071 1,600 892
Southern 1,783 1,842 10,999 10,083 21,021 17,544 22,336 12,089
66 Mongu 266 271 1,310 1,201 1,494 1,245 3,737 1,891
67 Kaoma 299 307 2,103 1,928 2,510 2,092 2,930 1,632
68 Lukulu 135 138 718 658 1,448 1,192 1,470 780
69 Kalabo 220 224 1,094 1,003 2,070 1,725 2,250 1,185
70 Senanga 207 211 1,011 926 1,638 1,365 2,043 1,096
71 Sesheke 138 141 740 678 2,502 2,085 2,465 1,411
72 Shang'ombo 144 147 740 678 1,346 1,121 1,481 763
Western 1,409 1,440 7,716 7,073 13,007 10,825 16,376 8,756
Total District
Recurrent Budget 14,628 15,019 84,653 77,604 136,074 114,890 156,468 83,139
Total MoH Budget 628,520 973,756 1,371,692 1,758,592
Source: MoFNP, 2005, 2008, 2010, 2011
50
Annex 2: Population age/sex structure, Zambia total, urban and rural, 2010
Source: CSO, Census 2010
51
Annex 3: Variables initially proposed by the RASC
52
Source: MoH, 2004